https://github.com/amalan-constat/aasc-2022
Australasian Applied Statistical Conference 2022 - Model robust subsampling approach
Science Score: 10.0%
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Low similarity (2.8%) to scientific vocabulary
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Australasian Applied Statistical Conference 2022 - Model robust subsampling approach
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- Host: GitHub
- Owner: Amalan-ConStat
- Language: PostScript
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Created over 3 years ago
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https://github.com/Amalan-ConStat/AASC-2022/blob/main/
# AASC-2022 Australasian Applied Statistics Conference 2022 - Poster for the Model robust subsampling approach Some results of our paper [A model robust sub-sampling approach for Generalised Linear Models in Big data settings](https://arxiv.org/abs/2207.14440) was presented at the Australasian Applied Statistics 2022 conference as a poster. In this repository the latex version of the poster is available for you to read. 
Owner
- Name: M. Amalan
- Login: Amalan-ConStat
- Kind: user
- Location: Kandy, Sri Lanka and Brisbane, Australia
- Company: QUT
- Website: https://amalan-con-stat.netlify.com/
- Twitter: Amalan_Con_Stat
- Repositories: 5
- Profile: https://github.com/Amalan-ConStat
Well, I am a statistician with practices in R statistical programming. Interests include R packages, Rmarkdown Reports, Rshiny Apps and #TidyTuesday.